Title :
Object Detection in Low Resolution Overhead Imagery
Author :
Kidwell, Paul ; Boakye, Kofi
Abstract :
The proliferation of overhead image sensors has yielded benefits to many applications, including civil transportation, military reconnaissance, and environmental monitoring. Central to these and other applications is the ability to reliably detect and localize rigid man-made objects within large field-of-view images. In this paper we present an automated object detection approach that performs reliably on low-resolution imagery given limited annotated training data. Our two-stage system couples a fast sliding-window object detector with a more computationally-intensive, high-accuracy stage using ensembles of 2D templates. A thorough development process has led to contributions including: (1) multiple feature extraction during template matching; (2) formulation of template selection as a feature selection problem; and (3) the use of background models to normalize each template and image pair. For validation, we demonstrate successful detection of a specific aircraft model over a range of lighting conditions and operating environments.
Keywords :
feature extraction; feature selection; image matching; image resolution; object detection; 2D templates; aircraft model; annotated training data; automated object detection approach; background models; civil transportation; environmental monitoring; feature extraction; feature selection; field-of-view images; image pair; lighting conditions; low resolution overhead imagery; military reconnaissance; object localization; overhead image sensors; sliding-window object detector; template matching; template selection; Detectors; Feature extraction; Logistics; Object detection; Robustness; Training; Vehicles;
Conference_Titel :
Applications and Computer Vision Workshops (WACVW), 2015 IEEE Winter
Conference_Location :
Waikoloa, HI
DOI :
10.1109/WACVW.2015.16